Decision support by machine learning systems for acute management of severely injured patients: A systematic review

被引:9
作者
Baur, David [1 ]
Gehlen, Tobias [2 ]
Scherer, Julian [3 ]
Back, David Alexander [2 ,4 ]
Tsitsilonis, Serafeim [2 ]
Kabir, Koroush [5 ]
Osterhoff, Georg [6 ]
机构
[1] Univ Hosp Leipzig, Dept Orthoped & Traumatol, Leipzig, Germany
[2] Charite Univ Med Berlin, Ctr Musculoskeletal Surg, Berlin, Germany
[3] Univ Hosp Zurich, Clin Traumatol, Zurich, Switzerland
[4] Bundeswehr Hosp Berlin, Clin Traumatol & Orthoped, Berlin, Germany
[5] Univ Hosp Bonn, Dept Orthopaed & Trauma Surg, Bonn, Germany
[6] Univ Hosp Leipzig, Dept Orthoped Traumatol & Plast Surg, Leipzig, Germany
关键词
trauma; polytrauma; decision support; machine learning; deep learning; artificial intelligence; neural networks; prediction; ARTIFICIAL NEURAL-NETWORK; LIFESAVING INTERVENTIONS; PREDICTION; NEED; SURVIVAL; VALIDATION; MODELS; TOOL;
D O I
10.3389/fsurg.2022.924810
中图分类号
R61 [外科手术学];
学科分类号
摘要
IntroductionTreating severely injured patients requires numerous critical decisions within short intervals in a highly complex situation. The coordination of a trauma team in this setting has been shown to be associated with multiple procedural errors, even of experienced care teams. Machine learning (ML) is an approach that estimates outcomes based on past experiences and data patterns using a computer-generated algorithm. This systematic review aimed to summarize the existing literature on the value of ML for the initial management of severely injured patients. MethodsWe conducted a systematic review of the literature with the goal of finding all articles describing the use of ML systems in the context of acute management of severely injured patients. MESH search of Pubmed/Medline and Web of Science was conducted. Studies including fewer than 10 patients were excluded. Studies were divided into the following main prediction groups: (1) injury pattern, (2) hemorrhage/need for transfusion, (3) emergency intervention, (4) ICU/length of hospital stay, and (5) mortality. ResultsThirty-six articles met the inclusion criteria; among these were two prospective and thirty-four retrospective case series. Publication dates ranged from 2000 to 2020 and included 32 different first authors. A total of 18,586,929 patients were included in the prediction models. Mortality was the most represented main prediction group (n = 19). ML models used were artificial neural network ( n = 15), singular vector machine (n = 3), Bayesian network (n = 7), random forest (n = 6), natural language processing (n = 2), stacked ensemble classifier [SuperLearner (SL), n = 3], k-nearest neighbor (n = 1), belief system (n = 1), and sequential minimal optimization (n = 2) models. Thirty articles assessed results as positive, five showed moderate results, and one article described negative results to their implementation of the respective prediction model. ConclusionsWhile the majority of articles show a generally positive result with high accuracy and precision, there are several requirements that need to be met to make the implementation of such models in daily clinical work possible. Furthermore, experience in dealing with on-site implementation and more clinical trials are necessary before the implementation of ML techniques in clinical care can become a reality.
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页数:14
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